The Science and Information (SAI) Organization
  • Home
  • About Us
  • Journals
  • Conferences
  • Contact Us

Publication Links

  • IJACSA
  • Author Guidelines
  • Publication Policies
  • Outstanding Reviewers

IJACSA

  • About the Journal
  • Call for Papers
  • Editorial Board
  • Author Guidelines
  • Submit your Paper
  • Current Issue
  • Archives
  • Indexing
  • Fees/ APC
  • Reviewers
  • Apply as a Reviewer

IJARAI

  • About the Journal
  • Archives
  • Indexing & Archiving

Special Issues

  • Home
  • Archives
  • Proposals
  • ICONS_BA 2025

Computer Vision Conference (CVC)

  • Home
  • Call for Papers
  • Submit your Paper/Poster
  • Register
  • Venue
  • Contact

Computing Conference

  • Home
  • Call for Papers
  • Submit your Paper/Poster
  • Register
  • Venue
  • Contact

Intelligent Systems Conference (IntelliSys)

  • Home
  • Call for Papers
  • Submit your Paper/Poster
  • Register
  • Venue
  • Contact

Future Technologies Conference (FTC)

  • Home
  • Call for Papers
  • Submit your Paper/Poster
  • Register
  • Venue
  • Contact
  • Home
  • Call for Papers
  • Editorial Board
  • Guidelines
  • Submit
  • Current Issue
  • Archives
  • Indexing
  • Fees
  • Reviewers
  • RSS Feed

DOI: 10.14569/IJACSA.2026.0170417
PDF

A Multi-Layer Computational Framework for Predicting Student Performance Ranges in Higher Education Using Machine Learning

Author 1: Abdellatif HARIF
Author 2: Moulay Abdellah KASSIMI

International Journal of Advanced Computer Science and Applications(IJACSA), Volume 17 Issue 4, 2026.

  • Abstract and Keywords
  • How to Cite this Article
  • {} BibTeX Source

Abstract: Predicting student academic performance constitutes a strategic priority for higher education institutions seeking to reduce attainment gaps and provide timely, targeted support. Existing approaches predominantly generate single-point performance estimates, overlooking the inherent variability in individual academic trajectories. This paper introduces a novel seven-layer computational framework that predicts student performance as a bounded range, capturing both minimum and maximum expected outcomes rather than as a solitary value. The framework integrates a bespoke imbalanced-data mitigation algorithm, three heuristic feature-selection methods: Genetic Algorithm, Particle Swarm Optimization, and Recursive Feature Elimination, and two complementary model architectures: a Parallel Architecture built upon fourteen supervised learning classifiers, and a Popularity Architecture centered on K-Modes/K-Prototype unsupervised clustering. The framework was validated on a rich, anonymized dataset provided by IBN ZOHR University in Morocco, comprising records from over 200,055 undergraduate students. The proposed framework achieves accuracy of 84%/86% (worst/common-case scenario), representing a 3%/5% improvement over an 81% baseline derived from the ten most relevant prior studies. The unsupervised Popularity Architecture attained peak accuracy of 96.91%, outperforming all supervised configurations. Results further demonstrate that omitting feature selection frequently yields competitive performance, and that increasing the number of hidden layers in neural networks does not significantly alter predictive accuracy in this educational context. The framework is designed for seamless integration into existing student performance dashboard systems, offering the institutions an actionable decision-support tool.

Keywords: Student performance prediction; machine learning; unsupervised learning; performance range; higher education; educational data mining; feature selection

Abdellatif HARIF and Moulay Abdellah KASSIMI. “A Multi-Layer Computational Framework for Predicting Student Performance Ranges in Higher Education Using Machine Learning”. International Journal of Advanced Computer Science and Applications (IJACSA) 17.4 (2026). http://dx.doi.org/10.14569/IJACSA.2026.0170417

@article{HARIF2026,
title = {A Multi-Layer Computational Framework for Predicting Student Performance Ranges in Higher Education Using Machine Learning},
journal = {International Journal of Advanced Computer Science and Applications},
doi = {10.14569/IJACSA.2026.0170417},
url = {http://dx.doi.org/10.14569/IJACSA.2026.0170417},
year = {2026},
publisher = {The Science and Information Organization},
volume = {17},
number = {4},
author = {Abdellatif HARIF and Moulay Abdellah KASSIMI}
}



Copyright Statement: This is an open access article licensed under a Creative Commons Attribution 4.0 International License, which permits unrestricted use, distribution, and reproduction in any medium, even commercially as long as the original work is properly cited.

IJACSA

Upcoming Conferences

Computer Vision Conference (CVC) 2026

21-22 May 2026

  • Amsterdam, The Netherlands

Computing Conference 2026

9-10 July 2026

  • London, United Kingdom

Artificial Intelligence Conference 2026

3-4 September 2026

  • Amsterdam, The Netherlands

Future Technologies Conference (FTC) 2026

15-16 October 2026

  • Berlin, Germany
The Science and Information (SAI) Organization
BACK TO TOP

Computer Science Journal

  • About the Journal
  • Call for Papers
  • Submit Paper
  • Indexing

Our Conferences

  • Computer Vision Conference
  • Computing Conference
  • Intelligent Systems Conference
  • Future Technologies Conference

Help & Support

  • Contact Us
  • About Us
  • Terms and Conditions
  • Privacy Policy

The Science and Information (SAI) Organization Limited is a company registered in England and Wales under Company Number 8933205.